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基于虚拟现实技术的铁路电务施工仿真系统设计浅析 被引量:3

Discussion on Design of Railway C&S Engineering Construction Simulation System Based on Virtual Reality Technology
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摘要 基于虚拟现实技术的仿真系统是当前仿真模拟产品的重要组成部分和发展方向,已经在多个领域的仿真模拟中得到广泛应用。针对当前电务施工演练培训方面存在的问题,提出了一种基于虚拟现实技术的铁路电务施工仿真系统设计方案,包括应用背景、系统概述以及系统功能设计等。该虚拟仿真系统参照现场施工标准,执行铁路信号工程施工工艺流程,充分利用虚拟现实、机器学习等多种技术,实现对铁路电务施工及维护人员的培训及考核。 The simulation systems based on virtual reality technology are important parts and the development direction of simulation products, which are been widely applied in the simulation in many fields. Aim at the problems existing in the training and practice of C&S engineering construction, a design of the railway C&S engineering construction simulation system based on virtual reality technology is proposed. The application background, overview and function design of the system are described. This virtual simulation system can execute the process of railway C&S engineering construction in compliance with relevant on-site construction standards by making use of virtual reality, machine learning and other technologies to realize training and assessment of railway C&S construction and maintenance personnel.
作者 辛东红 Xin Donghong
出处 《铁道通信信号》 2021年第7期63-68,共6页 Railway Signalling & Communication
关键词 虚拟现实 培训 电务施工 智能考核 决策树 Virtual reality Training C&S engineering construction Intelligent examination Decision tree
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